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dataloader_max_margin.py
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#!/usr/bin/python3
from __future__ import absolute_import
from __future__ import division
from __future__ import print_function
import numpy as np
import torch
from torch.utils.data import Dataset
class TrainDataset(Dataset):
def __init__(self, triples, nentity, nrelation, negative_sample_size, mode):
self.len = len(triples)
self.triples = triples
self.triple_set = set(triples)
self.nentity = nentity
self.nrelation = nrelation
self.negative_sample_size = negative_sample_size
self.mode = mode
self.count = self.count_frequency(triples)
self.true_head, self.true_tail = self.get_true_head_and_tail(self.triples)
def __len__(self):
return self.len
def __getitem__(self, idx):
positive_sample = self.triples[idx]
head, relation, tail = positive_sample
subsampling_weight = self.count[(head, relation)] + self.count[(tail, -relation-1)]
subsampling_weight = torch.sqrt(1 / torch.Tensor([subsampling_weight]))
negative_sample_list = []
negative_sample_size = 0
while negative_sample_size < self.negative_sample_size:
negative_sample = np.random.randint(self.nentity, size=self.negative_sample_size*2)
if self.mode == 'head-batch':
mask = np.in1d(
negative_sample,
self.true_head[(relation, tail)],
assume_unique=True,
invert=True
)
elif self.mode == 'tail-batch':
mask = np.in1d(
negative_sample,
self.true_tail[(head, relation)],
assume_unique=True,
invert=True
)
else:
raise ValueError('Training batch mode %s not supported' % self.mode)
negative_sample = negative_sample[mask]
negative_sample_list.append(negative_sample)
negative_sample_size += negative_sample.size
negative_sample = np.concatenate(negative_sample_list)[:self.negative_sample_size]
negative_sample = torch.from_numpy(negative_sample)
positive_sample = torch.LongTensor(positive_sample)
return positive_sample, negative_sample, subsampling_weight, self.mode
@staticmethod
def collate_fn(data):
positive_sample = torch.stack([_[0] for _ in data], dim=0)
negative_sample = torch.stack([_[1] for _ in data], dim=0)
subsample_weight = torch.cat([_[2] for _ in data], dim=0)
mode = data[0][3]
return positive_sample, negative_sample, subsample_weight, mode
@staticmethod
def count_frequency(triples, start=4):
'''
Get frequency of a partial triple like (head, relation) or (relation, tail)
The frequency will be used for subsampling like word2vec
'''
count = {}
for head, relation, tail in triples:
if (head, relation) not in count:
count[(head, relation)] = start
else:
count[(head, relation)] += 1
if (tail, -relation-1) not in count:
count[(tail, -relation-1)] = start
else:
count[(tail, -relation-1)] += 1
return count
@staticmethod
def get_true_head_and_tail(triples):
'''
Build a dictionary of true triples that will
be used to filter these true triples for negative sampling
'''
true_head = {}
true_tail = {}
for head, relation, tail in triples:
if (head, relation) not in true_tail:
true_tail[(head, relation)] = []
true_tail[(head, relation)].append(tail)
if (relation, tail) not in true_head:
true_head[(relation, tail)] = []
true_head[(relation, tail)].append(head)
for relation, tail in true_head:
true_head[(relation, tail)] = np.array(list(set(true_head[(relation, tail)])))
for head, relation in true_tail:
true_tail[(head, relation)] = np.array(list(set(true_tail[(head, relation)])))
return true_head, true_tail
class SeedDataset(Dataset):
def __init__(self, triples, nentity, nrelation, negative_sample_size, mode, seed_sim):
self.len = len(triples)
self.triples = triples
self.triple_set = set(triples)
self.nentity = nentity
self.nrelation = nrelation
self.negative_sample_size = negative_sample_size
self.count = self.count_frequency(triples)
self.seed_sim = seed_sim
self.mode = mode
self.true_head, self.true_tail = self.get_true_head_and_tail(self.triples)
def __len__(self):
return self.len
def __getitem__(self, idx):
positive_sample = self.triples[idx]
seed_sim = self.seed_sim[idx]
head, relation, tail = positive_sample
subsampling_weight = self.count[(head, relation)] + self.count[(tail, -relation - 1)]
subsampling_weight = torch.sqrt(1 / torch.Tensor([subsampling_weight]))
negative_sample_list = []
negative_sample_size = 0
while negative_sample_size < self.negative_sample_size:
negative_sample = np.random.randint(self.nentity, size=self.negative_sample_size * 2)
if self.mode == 'head-batch':
mask = np.in1d(
negative_sample,
self.true_head[(relation, tail)],
assume_unique=True,
invert=True
)
elif self.mode == 'tail-batch':
mask = np.in1d(
negative_sample,
self.true_tail[(head, relation)],
assume_unique=True,
invert=True
)
else:
raise ValueError('Training batch mode %s not supported' % self.mode)
negative_sample = negative_sample[mask]
negative_sample_list.append(negative_sample)
negative_sample_size += negative_sample.size
negative_sample = np.concatenate(negative_sample_list)[:self.negative_sample_size]
negative_sample = torch.from_numpy(negative_sample)
positive_sample = torch.LongTensor(positive_sample)
seed_sim = torch.Tensor([seed_sim])
return positive_sample, negative_sample, subsampling_weight, seed_sim, self.mode
@staticmethod
def collate_fn(data):
positive_sample = torch.stack([_[0] for _ in data], dim=0)
negative_sample = torch.stack([_[1] for _ in data], dim=0)
subsample_weight = torch.stack([_[2] for _ in data], dim=0)
seed_sim = torch.stack([_[3] for _ in data], dim=0)
mode = data[0][4]
return positive_sample, negative_sample, subsample_weight, seed_sim, mode
@staticmethod
def count_frequency(triples, start=4):
'''
Get frequency of a partial triple like (head, relation) or (relation, tail)
The frequency will be used for subsampling like word2vec
'''
count = {}
for head, relation, tail in triples:
if (head, relation) not in count:
count[(head, relation)] = start
else:
count[(head, relation)] += 1
if (tail, -relation - 1) not in count:
count[(tail, -relation - 1)] = start
else:
count[(tail, -relation - 1)] += 1
return count
@staticmethod
def get_true_head_and_tail(triples):
'''
Build a dictionary of true triples that will
be used to filter these true triples for negative sampling
'''
true_head = {}
true_tail = {}
for head, relation, tail in triples:
if (head, relation) not in true_tail:
true_tail[(head, relation)] = []
true_tail[(head, relation)].append(tail)
if (relation, tail) not in true_head:
true_head[(relation, tail)] = []
true_head[(relation, tail)].append(head)
for relation, tail in true_head:
true_head[(relation, tail)] = np.array(list(set(true_head[(relation, tail)])))
for head, relation in true_tail:
true_tail[(head, relation)] = np.array(list(set(true_tail[(head, relation)])))
return true_head, true_tail
class BidirectionalOneShotIterator(object):
def __init__(self, dataloader_head, dataloader_tail):
self.iterator_head = self.one_shot_iterator(dataloader_head)
self.iterator_tail = self.one_shot_iterator(dataloader_tail)
self.step = 0
def __next__(self):
self.step += 1
if self.step % 2 == 0:
data = next(self.iterator_head)
else:
data = next(self.iterator_tail)
return data
@staticmethod
def one_shot_iterator(dataloader):
'''
Transform a PyTorch Dataloader into python iterator
'''
while True:
for data in dataloader:
yield data